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Planning for robust reserve networks using uncertainty analysis
Authors:Atte Moilanen  Michael C Runge  Jane Elith  Andrew Tyre  Yohay Carmel  Eric Fegraus  Brendan A Wintle  Mark Burgman  Yakov Ben-Haim
Institution:1. Metapopulation Research Group, Department of Biological and Environmental Sciences, P.O. Box 65, FI-00014 University of Helsinki, Finland;2. USGS Patuxent Wildlife Research Center, 12100 Beech Forest Road, Laurel, MD 20708, United States;3. School of Botany, University of Melbourne, Parkville, Vic. 3010, Australia;4. School of Natural Resource Sciences, University of Nebraska-Lincoln, 202 Natural Resources Hall, East Campus Lincoln, NE 68583-0819, United States;5. Faculty of Mechanical Engineering, Technion, Israel Institute of Technology, Haifa 32000, Israel;6. NCEAS National Center for Ecological Analysis and Synthesis, 735 State Street, Suite 300, Santa Barbara, CA 93101, United States
Abstract:Planning land-use for biodiversity conservation frequently involves computer-assisted reserve selection algorithms. Typically such algorithms operate on matrices of species presence–absence in sites, or on species-specific distributions of model predicted probabilities of occurrence in grid cells. There are practically always errors in input data—erroneous species presence–absence data, structural and parametric uncertainty in predictive habitat models, and lack of correspondence between temporal presence and long-run persistence. Despite these uncertainties, typical reserve selection methods proceed as if there is no uncertainty in the data or models. Having two conservation options of apparently equal biological value, one would prefer the option whose value is relatively insensitive to errors in planning inputs. In this work we show how uncertainty analysis for reserve planning can be implemented within a framework of information-gap decision theory, generating reserve designs that are robust to uncertainty. Consideration of uncertainty involves modifications to the typical objective functions used in reserve selection. Search for robust-optimal reserve structures can still be implemented via typical reserve selection optimization techniques, including stepwise heuristics, integer-programming and stochastic global search.
Keywords:Reserve selection  Site selection algorithm  Conservation planning  Uncertainty analysis  Information-gap decision theory
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